Binary Neutron Star Merger Search Pipeline Powered by Deep Learning
Alistair McLeod, Damon Beveridge, Linqing Wen, Andreas Wicenec

TL;DR
This paper introduces a deep learning pipeline for detecting binary neutron star mergers in gravitational wave data, improving sensitivity and robustness against noise and glitches, and increasing detection rates.
Contribution
The authors develop a convolutional neural network-based pipeline that shortens signal timescales and enhances detection sensitivity for binary neutron star mergers.
Findings
Comparable sensitivity to existing pipelines below the detection threshold.
Increases total binary neutron star detections by 12%.
Successfully detects known mergers GW170817 and GW190425 despite noise.
Abstract
Gravitational waves are now routinely detected from compact binary mergers, with binary neutron star mergers being of note for multi-messenger astronomy as they have been observed to produce electromagnetic counterparts. Novel search pipelines for these mergers could increase the combined search sensitivity, and could improve the ability to detect real gravitational wave signals in the presence of glitches and non-stationary detector noise. Deep learning has found success in other areas of gravitational wave data analysis, but a sensitive deep learning-based search for binary neutron star mergers has proven elusive due to their long signal length. In this work, we present a deep learning pipeline for detecting binary neutron star mergers. By training a convolutional neural network to detect binary neutron star mergers in the signal-to-noise ratio time series, we concentrate signal power…
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Taxonomy
TopicsPulsars and Gravitational Waves Research · Gamma-ray bursts and supernovae · Astronomical Observations and Instrumentation
